[1] Rami M Olwan. The history of international intellectual property and development. In Intellectual Property and Development, pages 35–98. Springer, 2012.
[2] W.I.P.O.,n.d. Inside WIPO ,What is WIPO? Available at: https://www.wipo.int/aboutwipo/en/, Accessed 05 02 2020.
[3] W.I.P.O.,n.d. Intellectual Property Statistics. Available at: https://www.wipo.int/ipstats/en/#accordion collapse 01, Accessed 05 02 2020.
[4] W.I.P.O.,n.d. Facts and Figures. Available at: https://www.wipo.int/edocs/infogdocs/en/ipfactsandfigures2018/, Accessed 05 02 2020.
[5] W. I. P. O., n.d. wipo | madrid, madrid the international trademark system. Available at: https://www.wipo.int/madrid/en/, Accessed 05 02 2020.
[6] Supreet Sidhu and Jyoti Saxena. Content based image retrieval a review. International Journal Of Research In Computer Applications And Robotics, 3(5):84–88, 2015.
[7] Hyun-Ho Han, Seuc-Ho Ryu, Gyoo-Soo Chae, and Sang-Hun Lee. Image retrieval using cbir including light position analysis. Wireless Personal Communications, 105(2):525–543, 2019.
[8] Ghanshyam Raghuwanshi and Vipin Tyagi. Impact of feature extraction techniques on a cbir system. In International Conference on Advances in Computing and Data Sciences, pages 338–348. Springer, 2019.
[9] Snehal Mahajan and Dharmaraj Patil. Image retrieval using contribution-based clustering algorithm with different feature extraction techniques. In 2014 Conference on IT in Business, Industry and Government (CSIBIG), pages 1–7. IEEE, 2014.
[10] Mushtaq Ali, Le Dong, Yan Liang, Zongyi Xu, Ling He, and Ning Feng. A color image retrieval system based on weighted average. In 2014 IEEE International Conference on Signal Processing, Communications and Computing (ICSPCC), pages 184–189. IEEE, 2014.
[11] S Mangijao Singh and K Hemachandran. Content-based image retrieval using color moment and gabor texture feature. International Journal of Computer Science Issues (IJCSI), 9 (5):299, 2012.
[12] Manimala Singha and K Hemachandran. Content based image retrieval using color and texture. Signal & Image Processing, 3(1):39, 2012.
[13] S Sulochana and R Vidhya. Texture based image retrieval using framelet transform-gray level cooccurrence matrix (glcm). International Journal of Advanced Research in Artificial Intelligence, 2 (2):68–73, 2013.
[14] Nitin Jain and Dr SS Salankar. Color & texture feature extraction for content based image retrieval. IOSR Journal of Electrical and Electronics Engineering (IOSR-JEEE) e-ISSN, pages 2278–1676, 2014.
[15] Amandeep Khokher and Rajneesh Talwar. Content-based image retrieval: Feature extraction techniques and applications. In International conference on recent advances and future trends in information technology (iRAFIT2012), pages 9–14, 2012.
[16] A Bhagyalakshmi and V Vijayachamundeeswan. A survey on content based image retrieval using various operators. In Proceedings of IEEE International Conference on Computer Communication and Systems ICCCS14, pages 018–023. IEEE, 2014.
[17] Chaudhari Reshma and AM Patil. Content based image retrieval using color and shape features. International Journal of Advanced Research in Electrical, Electronics and Instrumentation Engineering, 1(5):386–392, 2012.
[18] AF Adrakatti, RS Wodeyar, and KR Mulla. Search by image: a novel approach to content based image retrieval system. International Journal of Library Science, 14(3):41–47, 2016.
[19] B Ramamurthy and KR Chandran. Content based image retrieval for medical images using canny edge detection algorithm. International Journal of Computer Applications, 17(6):32–37, 2011.
[20] Wipo ip portal. Available at: https://www3.wipo.int/branddb/en/, Accessed 2019 12 24.
[21] trademarkengine, n.d. trademarkengine. Available at: https://www.trademarkengine.com/freetrademark-search/trademark-search, Accessed 05 02 2020.
[22] trademarkengine, n.d. About Trademark Engine. Available at: https://www.trademarkengine.com/support/about, Accessed 05 02 2020.
[23] trademarkengine, n.d. free trademark search. Available at: https://www.trademarkengine.com/freetrademark-search/trademark-search, Accessed 29 12 2014.
[24] Trademarkvision, n.d. Welcome. Available at: https://trademarkvision.compumark.com/about/, Accessed 05 02 2020.
[25] Trademarkvision, n.d. Home. Available at: https://trademarkvision.compumark.com/, Accessed 05 02 2020. [26] EUIPO european union intellectual property office esearch plus, n.d. eSearch plus The EUIPO’S database access. Available at: https://euipo.europa.eu/eSearch/, Accessed 2019 12 24.
[27] Trademarkvision, n.d. Powering governments. Available at: https://trademarkvision.compumark.com/government, Accessed 05 02 2020.
[28] Australian government ip australia australian trade mark search, n.d. Quick search. Available at: https://search.ipaustralia.gov.au/trademarks/search /quick, Accessed 2019 12 24.
[29] Claudio A Perez, Pablo A Est´evez, Francisco J Galdames, Daniel A Schulz, Juan P Perez, Diego Bast´ıas, and Daniel R Vilar. Trademark image retrieval using a combination of deep convolutional neural networks. In 2018 International Joint Conference on Neural Networks (IJCNN), pages 1–7. IEEE, 2018.
[30] Toshikazu Kato, Koreaki Fujimura, and Hiroyuki Shimogaki Nonmember. Trademark: multimedia image database system with intelligent human interface. Systems and computers in Japan, 21(11):33–46, 1990.
[31] Jian-Kang Wu, Chian-Prong Lam, Babu M. Mehtre, Yong Jian Gao, and A Desai Narasimhalu. Content-based retrieval for trademark registration. In Representation and Retrieval of Visual Media in Multimedia Systems, pages 69–91. Springer, 1996.
[32] John P Eakins, Jago M Boardman, and Margaret E Graham. Similarity retrieval of trademark images. IEEE multimedia, 5(2):53–63, 1998.
[33] Michael S Lew. Principles of visual information retrieval. Springer Science & Business Media, 2013.
[34] Stefanos Vrochidis, Anastasia Moumtzidou, and Ioannis Kompatsiaris. Concept-based patent image retrieval. World Patent Information, 34(4): 292–303, 2012.
[35] Zhengkang Chen and Xiaohong Wang. Trademark image retrieval system based on sift algorithm. In 2018 IEEE/ACIS 17th International Conference on Computer and Information Science (ICIS), pages 740–743. IEEE, 2018.
[36] Martin F Porter. An algorithm for suffix stripping. Program, 2006.
[37] Bernhard E Boser, Isabelle M Guyon, and Vladimir N Vapnik. A training algorithm for optimal margin classifiers. In Proceedings of the fifth annual workshop on Computational learning theory, pages 144–152, 1992.
[38] D Dietrich, B Heller, and B Yang. Data science & big data analytics discovering, analyzing, visualizing and presenting data (pp. 420), 2015.
[39] KG Srinivasa, GM Siddesh, and H Srinidhi. Network data analytics: a hands-on approach for application development. Springer, 2018.
[40] Charu C Aggarwal et al. Neural networks and deep learning. Springer, 10:978–3, 2018.